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QUBIQ: Uncertainty Quantification for Biomedical Image Segmentation Challenge

19 March 2024
Hongwei Bran
Fernando Navarro
Ivan Ezhov
Amirhossein Bayat
Dhritiman Das
Florian Kofler
Suprosanna Shit
Diana Waldmannstetter
Johannes C. Paetzold
Xiaobin Hu
Benedikt Wiestler
Lucas Zimmer
Tamaz Amiranashvili
Chinmay Prabhakar
Christoph Berger
Jonas Weidner
Michelle Alonso-Basant
Arif Rashid
Ujjwal Baid
Wesam Adel
Deniz Ali
Bhakti Baheti
Ying-Long Bai
Ishaan Bhatt
Sabri Can Cetindag
Wenting Chen
Li Cheng
Prasad Dutand
Lara Dular
M. Elattar
Ming Feng
Shengbo Gao
Henkjan Huisman
Weifeng Hu
S. Innani
Wei Jiat
Davood Karimi
Hugo J. Kuijf
Jin Tae Kwak
H. Le
Xiang Lia
Huiyan Lin
Tongliang Liu
Jun Ma
Kai Ma
Ting Ma
I. Oksuz
Robbie Holland
Arlindo L. Oliveira
Jimut Bahan Pal
Xuan Pei
Maoying Qiao
A. Saha
Raghavendra Selvan
Linlin Shen
Joao Lourencco Silva
Žiga Špiclin
Sanjay Talbar
Dadong Wang
Wei Wang
Xiong Wang
Yin Wang
Ruiling Xia
Kele Xu
Yanwu Yan
M. Yergin
Shuang Yu
Lingxi Zeng
YingLin Zhang
Jiachen Zhao
Yefeng Zheng
Martin Zukovec
Richard K G Do
Anton S. Becker
Amber L. Simpson
E. Konukoglu
Andras Jakab
Spyridon Bakas
Leo Joskowicz
Bjoern H. Menze
    UQCV
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Abstract

Uncertainty in medical image segmentation tasks, especially inter-rater variability, arising from differences in interpretations and annotations by various experts, presents a significant challenge in achieving consistent and reliable image segmentation. This variability not only reflects the inherent complexity and subjective nature of medical image interpretation but also directly impacts the development and evaluation of automated segmentation algorithms. Accurately modeling and quantifying this variability is essential for enhancing the robustness and clinical applicability of these algorithms. We report the set-up and summarize the benchmark results of the Quantification of Uncertainties in Biomedical Image Quantification Challenge (QUBIQ), which was organized in conjunction with International Conferences on Medical Image Computing and Computer-Assisted Intervention (MICCAI) 2020 and 2021. The challenge focuses on the uncertainty quantification of medical image segmentation which considers the omnipresence of inter-rater variability in imaging datasets. The large collection of images with multi-rater annotations features various modalities such as MRI and CT; various organs such as the brain, prostate, kidney, and pancreas; and different image dimensions 2D-vs-3D. A total of 24 teams submitted different solutions to the problem, combining various baseline models, Bayesian neural networks, and ensemble model techniques. The obtained results indicate the importance of the ensemble models, as well as the need for further research to develop efficient 3D methods for uncertainty quantification methods in 3D segmentation tasks.

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